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CN101854725A - Resource distribution and power distribution method for cellular multi-cell orthogonal frequency division multiple access (OFDMA) system - Google Patents

Resource distribution and power distribution method for cellular multi-cell orthogonal frequency division multiple access (OFDMA) system Download PDF

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CN101854725A
CN101854725A CN201010213897A CN201010213897A CN101854725A CN 101854725 A CN101854725 A CN 101854725A CN 201010213897 A CN201010213897 A CN 201010213897A CN 201010213897 A CN201010213897 A CN 201010213897A CN 101854725 A CN101854725 A CN 101854725A
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district
user
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CN101854725B (en
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廖学文
吕刚明
朱世华
任品毅
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Xian Jiaotong University
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Abstract

The invention discloses a resource distribution and power distribution method for a cellular multi-cell orthogonal frequency division multiple access (OFDMA) system. The resource distribution and power distribution method is characterized by comprising the following steps of: initializing a base station, establishing a bandwidth distribution scheme of each cell, determining a sub-carrier distribution scheme of users; distributing sub-carrier power to each cell; calculating and transmitting an interference cost factor of the neighboring cell; updating the interference cost factor transmitted to the cell by the neighboring cell; executing the next period of bandwidth and power distribution; and circulating the steps. In the distribution method, each base station can determine the transmitting power independently only with the limited cooperation existed among the base stations and through the share of the interference cost factor among the base stations, so that the interference level among the cells can be effectively controlled and the performance of the system can be optimized. Furthermore, a large burden is not brought into the information transfer among the base stations, so the distribution method has high practicability.

Description

A kind of resource allocation and power distribution method that is used for honeycomb multi-cell OFDMA system
Technical field
The invention belongs to communication technical field, relate to a kind of power distribution method of honeycomb multi-cell system, especially a kind of power distribution method that has the restriction of minimum transmission rate at the user based on the honeycomb multi-cell system of MIMO-OFDMA technology.
Background technology
The multi-antenna OFDMA technology is the basic physical-layer techniques that comprises back 3 third-generation mobile communications such as LTE, Wimax, makes the peak rate that can provide much larger than present 3G cell mobile communication systems by adopting bigger bandwidth, higher spectrum efficiency.The OFDMA technology can make the base station can be on the subcarrier of frequency domain frequency domain resource and transmitted power, the modulation system etc. of dispatched users, have flexible characteristic more with respect to the 3G system, and in the sub-district, can realize not existing between the user phase mutual interference.In order to make carrier frequency resource to be used more effectively, need on the subcarrier that every user distributes, realize the distribution of power, but present power distribution algorithm all concentrates on the distribution of resource and power between user in single sub-district, and seldom considers user's qos requirement.In addition, because the OFDMA system can adopt the mode of channeling in adjacent sub-district, make OFDMA can not ignore to the interference between the inter-cell user, especially partly can reduce user's spectrum efficiency greatly at cell edge, even system has distributed more frequency domain resource to Cell Edge User, and power can not reach user's transmission rate request, has reduced the overall spectral efficiency in the sub-district.If the interference of subscriber signal between the reduction sub-district, realize the optimal power and the frequency domain resource distribution of neighbor cell multi-user association, then need a control appliance that can carry out centralized control to many base stations, need a plurality of adjacent base stations all mutual interference information upwards to be fed back to master controller and carry out centralized processing and distribution, but the network configuration of this and following LTE, Wimax flattening is conflicting.And,, ensure that the power division and the allocation of carriers combined optimization problem of user's transmission rate can become extremely complicated because carrier number is bigger.
Summary of the invention
The objective of the invention is to overcome in the above-mentioned prior art deficiency that suppresses presence of intercell interference based on the power distribution method of OFDMA when the arranging net on a large scale of 3 generations of back, particularly in the future network structure, there is not centralized base station power Control Node, a kind of power distribution method of the honeycomb multi-cell system based on the MIMO-OFDMA technology is provided, this distribution method only needs to exist between the base station limited cooperation, by the interference cost factor sharing between the base station, its transmitted power can independently be determined in each base station, effectively control the presence of intercell interference level, and optimization system is an energy.
The objective of the invention is to solve by the following technical programs:
This resource allocation and the power distribution method that is used for honeycomb multi-cell OFDMA system specifically may further comprise the steps:
1) initialization
The definition interference cost factor is the marginal cost rate of rise of current area with the transmitting power growth of adjacent sub-district subcarrier, the transmission carrier power and the interference cost factor of a plurality of base stations in the mobile cellular communication system are initialized as zero, suppose that each base station is known to the subscriber channel fading coefficients in this sub-district;
2) formulate the bandwidth allocation scheme of each sub-district
The consideration current area is the m sub-district, and the base station adopts the M-BABS algorithm to determine the required subcarrier number of each user in the sub-district according to rate requirement, sub-carrier channels fading coefficients, the interference cost factor of each user in this sub-district; M is a natural number;
3) determine user's subcarrier distribution scheme
Each sub-district in the system is according to step 2) in bandwidth allocation scheme, adopting the M-RCG algorithm is that each user distributes suitable subcarrier in the sub-district;
4) give each cell allocation sub-carrier power
According to user's subcarrier allocation situation of this sub-district of step 3), calculate the Lagrange multiplier on each subcarrier
Figure BDA0000022869710000021
According to calculate Lagrange multiplier
Figure BDA0000022869710000022
Calculate and give this sub-district sub-carrier power that each user distributes
Figure BDA0000022869710000023
Wherein
Figure BDA0000022869710000024
K user's power is given s subcarrier allocation of m sub-district in expression; Described k and s are natural number; Described this sub-district is meant any one sub-district in the system;
5) calculating and sending is sent the interference cost factor of neighbor cell
If n sub-district and m sub-district are neighbor cells, according to Lagrange multiplier
Figure BDA0000022869710000025
The sub-carrier power of trying to achieve with the last step Calculate the interference cost factor of m sub-district to the n sub-district
Figure BDA0000022869710000027
And pass through the minizone data-interface with the interference cost factor
Figure BDA0000022869710000028
Send to the n sub-district; Described n is a natural number;
6) this cell update neighbor cell is issued the interference cost factor of this sub-district, goes to step 2) carry out bandwidth and the power division of following one-period, with this repeating step 2 that circulates) to step 6).
Further, in the above step 4): the computing formula of Lagrange multiplier is as follows:
λ k m = 2 R k m / S k m ( Π s ∈ S k m 1 + Δ s m g k , s m ) 1 S k m ln 2 ,
In the following formula
Figure BDA0000022869710000031
It is the sub-carrier number that the m cell allocation is given k user;
Figure BDA0000022869710000032
For the neighbor cell of all m sub-districts to the interference cost factor sum of m sub-district on s subcarrier;
Figure BDA0000022869710000033
It is the minimum transmission rate request of k user in the m sub-district; Intermediate variable
Figure BDA0000022869710000034
Be defined as
Figure BDA0000022869710000036
K ∈ U m, wherein
Figure BDA0000022869710000037
Base station and the channel fading coefficient of k user on s subcarrier of representing the m sub-district; Described Г=-ln (5BER)/1.5, be the error rate that the BER customer service requires; N is the assignable carrier wave sum of ofdm system; N 0Be the white noise power spectral density; B is a system bandwidth;
Figure BDA0000022869710000038
Represent that the n sub-district is to the interference gross power of k user on s subcarrier.
In addition, in the step 4): the computing formula of sub-carrier power is as follows:
p k , s m = [ λ k m ( 1 + Δ s m ) ln 2 - Γ ( I k , s m ( p m - ) + N 0 B / N ) | H k , s m | 2 ] + ,
In the following formula [] +Variable in the symbolic representation bracket is got variate-value itself greater than 0, when this variable is got 0 value less than 0.
In the above step 5) of the present invention, the m sub-district to the n sub-district in the computing formula of s subcarrier interference work factor is Δ s m , n = Σ k ∈ U m λ k m ∂ f ( γ k , s m ( p ) ) ∂ γ k , s m ( γ k , s m ) 2 p k , s m | H k , s m | 2 | H k , s n | 2 ;
Wherein P is the power division matrix that comprises all subcarriers of sub-district of system,
Figure BDA00000228697100000312
Be the reception Signal to Interference plus Noise Ratio of m community user k on subcarrier s:
γ k , s m ( p ) = p k , s m | H k , s m | 2 | H k , s m | 2 Σ j ∈ U m j ≠ k p j , s m + Σ n ∈ A m | H k , s n | 2 ( Σ i ∈ U n p i , s n ) + N 0 B / N .
The present invention has following beneficial effect:
Share the many sub-districts distributed associating allocation of carriers and the power distribution strategies of interfere information between base station of the present invention, allocation of carriers and power division can be determined according to the interference feedback of this community user situation and adjacent sub-district in every base station, need not other base station center controllers; This method has better convergence than traditional single cell power allocation algorithm; Minimum transmission rate service quality (QoS) requirement that it has promptly ensured the user can obtain littler outage probability again; And can effectively coordinate interference among adjacent cells, make that the average mutual interference ratio traditional algorithm between a plurality of base stations is littler.In addition,, bring bigger burden can for the information transmission between the base station, therefore have good practicality because each base station only just can obtain good interference coordination performance with the interference feedback of the main interference base station of considering all neighbor cells.
Description of drawings
Fig. 1 is the BABS bandwidth allocation algorithm block diagram based on the interference compensation correction;
Fig. 2 is the RCG subcarrier allocation algorithm block diagram based on the interference compensation correction;
Fig. 3 is the simulating scenes schematic diagram;
Fig. 4 is the system's average transmit power under the different loads;
Fig. 5 is the average interference noise ratio under the different loads;
Fig. 6 is the average interrupt probability under the different loads.
Embodiment
Below in conjunction with accompanying drawing the present invention is done and to describe in further detail:
The present invention considers the downlink OFDMA system that a sub-carrier number is N.The turnkey of setting up departments contains M sub-district, wherein M be one greater than 1 natural number, the m sub-district is one of them sub-district (so m also is a natural number) in M the sub-district of system, and has K in the m sub-district mIndividual excited users is used B={1, and 2 ..., M} and U m=1,2 ..., K mUser's set in the expression system respectively in all set of cells and m sub-district (being also referred to as " sub-district m "), and use S={1,2 ..., N} represents the set of subcarrier.Supposing the system adopts the full rate multiplex strategy, and all sub-district shared bandwidths are the frequency spectrum resource of B, and channeling makes that available bandwidth reaches maximum in the sub-district, but can cause existing between neighbor cell co-channel interference.If A mExpression produces the neighbor set of interference to the user in the m of sub-district.The definition matrix
Figure BDA0000022869710000041
The power division matrix of expression sub-district m, wherein
Figure BDA0000022869710000042
The transmitted power of user k in the m of sub-district (i.e. k user of m sub-district, k is a natural number) on subcarrier s (i.e. s subcarrier, s is a natural number) distributed in expression.In addition, definition p=[p 1p 2... p M] represent the power division matrix of whole network, and use The power division matrix of expression every other sub-district except that the m of sub-district, obviously p with
Figure BDA0000022869710000044
Has equivalence relation.Hereinafter, its dependent variable is adopted similarly definition.
Suppose that (Channel State Information CSI), uses for all users' of known this sub-district, base station ideal communication channel state information Expression base station m and user k are in the down channel fading coefficients of subcarrier s.In addition, can working in coordination with between the adjacent base station thereby suppose by mutual interface transmission information realization minizone.When given network power allocation matrix p, the reception Signal to Interference plus Noise Ratio (SINR) of the user k of m sub-district on subcarrier s can be expressed as
γ k , s m ( p ) = p k , s m | H k , s m | 2 | H k , s m | 2 Σ j ∈ U m j ≠ k p j , s m + Σ m ′ ∈ A m | H k , s m ′ | 2 ( Σ i ∈ U m ′ p i , s m ′ ) + N 0 B / N
In the formula:
N 0---noise power spectral density.
Simple in order to explain, definition
Figure BDA0000022869710000053
Represent neighbor cell to the interference gross power of user k on subcarrier s,
Figure BDA0000022869710000054
The total transmitting power of expression base station m ' on subcarrier s.System adopts the Adaptive Modulation and Coding strategy based on the QAM modulation, supposes that receiver has desirable phase-detection, and then the interior user k of OFDM symbol at the bit number that subcarrier s can transmit at most is:
c k , s m ( p ) = f ( γ k , s m ( p ) ) = log 2 ( 1 + γ k , s m ( p ) Γ )
Wherein Г=-ln (5BER)/1.5.The transmission rate of user k (bit/symbol) can be expressed as
r k m ( p ) = Σ s ∈ S c k , s m
Suppose all users' of known this sub-district, base station downlink channel condition information, in the FDD system, this needs user's feedback, in the TDD system, then can utilize the symmetry of lower channel to obtain according to up channel.In addition, suppose between the base station Data transmission mutually, for example in the LTE standard, just can intercom mutually between the E-NodeB by X2 interface.Goal in research of the present invention is to seek the optimal resource allocation strategy, makes it make the total transmitted power minimum of system under the prerequisite that satisfies the minimum transmission rate request of user.This problem can be expressed as following Optimization Model (hereinafter to be referred as the global optimization problem):
arg min p Σ m ∈ B Σ k ∈ U m Σ s ∈ S p k , s m
Its restrictive condition is:
R k m ≤ Σ s ∈ S f ( γ k , s m ) , ∀ k ∈ U m
p m∈P m
Figure BDA0000022869710000063
k∈U m,s∈S
In the formula:
---the minimum transmission rate request of user k in the m of sub-district;
P m---
Figure BDA0000022869710000065
The feasible resource allocation policy set of expression sub-district m.
More than the transmission rate restriction of first condition respective user, second condition represents that power can not be for negative.
One, PROBLEM DECOMPOSITION
In order to find the solution the global optimization problem, the optimal resource allocation strategy need be sought by system in all possible power distribution strategies, subcarrier allocation strategy, so the global optimization problem is actually a mixed integer programming problem, is difficult to directly find the solution.Therefore decompose based on antithesis and obtained a kind of distributed resource allocation strategy.At first, provide the Lagrangian of global optimization problem
L ( p , λ ) = Σ m ∈ B Σ k ∈ U m Σ s ∈ S p k , s m + Σ m ∈ B Σ k ∈ U m λ k m ( R k m - Σ s ∈ S f ( γ k , s m ) )
In the formula:
λ---Lagrangian vector can be expressed as
Figure BDA0000022869710000067
Wherein Be the Lagrangian vector relevant with sub-district m, further,
Figure BDA0000022869710000069
Be and user k (k ∈ U m) Lagrangian that minimum transmission rate is relevant; () TThe representing matrix matrix transpose operation.
(p λ) can be regarded as the total cost of system in order to guarantee that user QoS pays to L, and comprise two parts: first is the power that system consumes, and second portion can be considered as not satisfying the punishment of user QoS demand.
According to the Lagrange duality theory, can obtain following Lagrange duality function
g ( λ ) = inf p m ∈ P m , ∀ m L ( p , λ ) = inf p m ∈ P m , ∀ m ( Σ m ∈ B Σ k ∈ U m Σ s ∈ S p k , s m + Σ m ∈ B Σ k ∈ U m λ k m ( R k m - Σ s ∈ S f ( γ k , s m ) ) )
In the formula: inf---the expression infimum if there is not infimum in target function, then is taken as-∞.Because dual function is the pointwise infimum of a series of affine functions about λ, therefore whether no matter global optimization problem is protruding, and its dual function g (λ) must be the concave function about λ.Given λ establishes
Figure BDA00000228697100000611
Then g (λ) can equivalent representation be: g (λ)=L (p *(λ), λ),
According to duality theory, can obtain the dual problem of former global optimization problem
max?g(λ)
Restrictive condition:
Figure BDA0000022869710000071
Figure BDA0000022869710000072
K ∈ U m
Because dual problem is protruding problem, can directly adopt the subgradient algorithm to find the solution, yet because p is found the solution in the existence of presence of intercell interference when given λ *(λ) still has very high complexity.Because λ dimension increases with number of users in addition, has further increased the complexity of problem solving.Therefore, use antithesis and decompose correlation theory, further dual problem is decomposed into a plurality of subproblems and finds the solution.If the optimal solution of dual problem is λ *, corresponding resource allocation policy is p **).When N → ∞, p then **) be the optimal solution of former problem.Then according to KKT optimal conditions, then (p **), λ *) right
Figure BDA0000022869710000073
Satisfy following equation:
∂ L ( p , λ ) ∂ p k , s m | ( p , λ ) = ( p * ( λ * ) , λ * ) = ( 1 - Σ j ∈ U m λ j m ∂ f ( γ j , s m ( p ) ) ∂ p k , s m - Σ n ∈ A m Σ i ∈ U n λ i n ∂ f ( γ i , s n ( p ) ) ∂ p k , s m ) | ( p , λ ) = ( p * ( λ * ) , λ * )
= 0 ; ∀ k ∈ U m , s ∈ S
λ k m * ( R k m - Σ s ∈ S f ( γ k , s m ( p * ) ) ) = 0 ; ∀ k ∈ U m
R k m - Σ s ∈ S f ( γ k , s m ( p * ) ) = 0 ; ∀ k ∈ U m
λ k m * ≥ 0
Simple in order to explain, be defined as follows parameter
Δ s n , m ( p , λ n ) = Δ - Σ i ∈ U n λ i n ∂ f ( γ i , s n ( p ) ) ∂ p k , s m = Σ i ∈ U n λ i n ∂ f ( γ i , s n ( p ) ) ∂ γ i , s n ( γ i , s n ) 2 p i , s n | H i , s n | 2 | H i , s m | 2
Here, The marginal cost rate of rise that total cost of expression sub-district n increases with the transmitting power on the m sub-carriers s of sub-district.
Figure BDA00000228697100000711
Be the coupling terms of sub-district n and sub-district m, this coupling terms comes from the existence of minizone co-channel interference just.Because the existence of presence of intercell interference, when the transmitted power among the increase sub-district m, sub-district n, perhaps pays for because of transmission rate can not satisfy with regard to needing the raising transmitted power in order to guarantee the corresponding user's who is interfered QoS, thereby causes the lifting of total cost.
Figure BDA0000022869710000081
Described the susceptibility of the transmission of sub-district n to this presence of intercell interference, therefore be referred to as the interference cost factor, this core content of the present invention just can be realized distributed power division by sharing of inter base station interference work factor.
(p, λ) equivalence is designated as with Lagrangian L below
Figure BDA0000022869710000082
By this notation with the resource allocation problem of emphasizing sub-district m and the relation of global optimization problem.For further analysis, be defined as follows function:
L m ( p m , p m - , λ m , λ m - ) = Σ k ∈ U m Σ s ∈ S ( 1 + Σ n ∈ A m Δ d n , m ( p m , p m - , λ n ) ) p k , s m
+ Σ k ∈ U m λ k m ( R k m - Σ s ∈ S f ( γ k , s m ( p m , p m - ) ) )
Consider presence of intercell interference normally a plurality of interference add and, might as well establish
Figure BDA0000022869710000085
Suppose
Figure BDA0000022869710000086
With
Figure BDA0000022869710000087
Immobilize, then Can be designated as constant
Figure BDA0000022869710000089
And order
Figure BDA00000228697100000810
Then
Figure BDA00000228697100000811
Can equivalence be designated as
L m ( p m , p m - , λ m , λ m - ) = L m ( p m , λ m )
= Σ k ∈ U m Σ s ∈ S ( 1 + Δ s m ) p k , s m + Σ k ∈ U m λ k m ( R k m - Σ s ∈ S f ( γ k , s m ( p m , p m - ) ) )
Checking easily, L m(p m, λ m) be the Lagrange duality function of following optimization problem just ( ∀ m ∈ B ) :
arg min p m ∈ P m Σ k ∈ U m Σ s ∈ S p k , s m + Σ k ∈ U m Σ s ∈ S Δ s m p k , s m
Restrictive condition:
R k m = Σ s ∈ S f ( γ k , s m ( p m , p m - ) ) , ∀ k ∈ U m
Observe the problems referred to above, when
Figure BDA00000228697100000818
With
Figure BDA00000228697100000819
In the time of fixedly, its target function comprises two parts: first represents the total transmitting power in the m of sub-district, is that base station m guarantees the qos requirement of user in this sub-district and the necessary cost paid; Second portion is represented the increase of all adjacent sub-district costs of causing owing to this area interference, is the compensation that base station m promotes adjacent sub-district cost.Therefore, the problems referred to above are actual is a single cell power assignment problem (hereinafter to be referred as local optimization problem) with interference compensation.By this problem is optimized, system not only needs to reduce the transmitting power of this sub-district in order to guarantee that user QoS is required, will control the deterioration of this cell transmission to the neighbor cell performance simultaneously as far as possible.So, in the hypothesis interference cost factor
Figure BDA0000022869710000091
Under the known condition, local optimization problem can independently be found the solution.Therefore, many local resources assignment problem is modeled as a power division game, to share the interference cost factor between the participant and disturb and compensate in strict accordance with the interference cost factor pair, be called limited cooperative game model (Limited-Cooperative Game, LCG), based on this betting model, can provide a kind of distributed iterative power distribution algorithm (LCG based Distributed Iterative Resource Allocation, LCG-DIRA), in each iteration, local optimization problem is found the solution in each base station under the condition of the given interference cost factor, seek local optimal resource allocation strategy, upgrade the interference cost factor then, move in circles with this.
Two, local resource allocation strategy
Consideration is under the given interference cost factor, and finding the solution of subproblem optimized in this locality of m sub-district.Given
Figure BDA0000022869710000092
Figure BDA0000022869710000093
Provable to local power division problem:
Theorem: establish
Figure BDA0000022869710000094
Be the optimal solution of the local power division problem of sub-district m, the optimal solution of corresponding dual problem is
Figure BDA0000022869710000095
Then
Figure BDA0000022869710000096
Satisfy: to any s ∈ S and k s∈ U m, if
Figure BDA0000022869710000097
Then to any k ∈ U mAnd k ≠ k s, have
Figure BDA0000022869710000098
K wherein sBe chosen as
k s = arg max k ∈ U m ( λ k m f ( γ ( p m * , p m - ) ) )
Above-mentioned theorem shows that in the subcarrier allocation strategy of optimum, local subcarrier allocation must satisfy the orthogonality requirement, does not allow two or more users to transmit simultaneously on the promptly same subcarrier.If
Figure BDA00000228697100000910
Then subcarrier s distributes to user k ∈ U m, otherwise
Figure BDA00000228697100000911
At this moment, disturbing in the sub-district is 0, so the reception Signal to Interference plus Noise Ratio (SINR) of user k on subcarrier s can be expressed as again:
γ k , s m ( p ) = p k , s m | H k , s m | 2 I k , s m ( p m - ) + N 0 B / N
Then the KKT condition can be reduced to:
∂ L m ( p m , λ m ) ∂ p k , s m | ( p m , λ m ) = ( p m * , λ m * ) = ( 1 - Σ j ∈ U m λ j m ∂ f ( γ j , s m ( p m , p m - ) ) ∂ p k , s + Δ s m ) | ( p m , λ m ) = ( p m * , λ m * )
= 1 + Δ s m - λ k m * ln 2 | H k , s m | 2 p k , s m * | H k , s m | 2 + Γ ( I k , s m ( p m - ) + N 0 B / N )
= 0 ; ∀ k ∈ U m , s ∈ S
According to following formula, can further obtain as drawing a conclusion:
Be located at optimal resource allocation strategy sub-carriers s and distribute to user k, then user k best transmitted power on subcarrier s is:
p k , s m * = [ λ k m * ( 1 + Δ s m ) ln 2 - Γ ( I k , s m ( p m - ) + N 0 B / N ) | H k , s m | 2 ] +
If the interference cost factor on certain subcarrier
Figure BDA0000022869710000105
Bigger, the transmitted power of distributing to this subcarrier also can be less relatively, thereby reduce the interference to adjacent sub-district.Simple in order to explain, hereinafter order
Figure BDA0000022869710000106
Figure BDA0000022869710000107
K ∈ U m
Above-mentioned conclusion has provided fixing
Figure BDA0000022869710000108
With
Figure BDA0000022869710000109
The time, the optimal resource allocation condition of local optimization problem.Yet subcarrier allocation and power division influence each other, reciprocal causation.Observe local optimization problem, this is a power weightings and minimization problem, by revise the two-step allocation algorithm (this algorithm was divided into for two steps for Modified-BABS-RCG, M-BABS-RCG) design subcarrier allocation algorithm:
The first step: suppose that the channel fading on each subcarrier of user is identical with the interference cost factor, determine the bandwidth that the user is required, i.e. the subcarrier number.Algorithm flow is an example with sub-district m as shown in Figure 1, and bandwidth allocation algorithm is described below:
Step 1: initialization, suppose to distribute to the subcarrier number of each user k among the m of sub-district
Figure BDA00000228697100001010
And suppose that the channel gain of user on each subcarrier is Continue Step 2.
Step 2: judge
Figure BDA00000228697100001012
Whether set up.If be false, represent that then the subcarrier number assigns, algorithm finishes.Otherwise, continue Step 3.
Step 3: seek
Figure BDA0000022869710000111
Among the expression sub-district m by increasing the user that a subcarrier can maximum reduction power; Continue Step 4.
Step 4: order
Figure BDA0000022869710000112
Be about to distribute to user k sThe subcarrier number increase by 1; Get back to Step 2.
Second step: according to bandwidth allocation scheme, for each user selects suitable subcarrier.With sub-district m is example, algorithm flow as shown in Figure 2, this algorithm flow is specific as follows:
Step 1: initialization, and the sub-carrier set that each user k is distributed in order is combined into sky, even Calculate the average channel gain of user k
Figure BDA0000022869710000114
With average interference cost,
Figure BDA0000022869710000115
Make A=S, U=U mContinue Step 2.
Step 2: the Lagrangian of estimating all users The bit number that estimating user can be transmitted on each subcarrier
Figure BDA0000022869710000117
Continue Step 3.
Step 3: take out norator carrier wave s from subcarrier set A, seek the user that can transmit maximum bit numbers at subcarrier s And subcarrier s distributed to user k sEven,
Figure BDA0000022869710000119
Continue Step4.
Step 4: remove subcarrier s from subcarrier set A, i.e. A=A-{s}.Judge that whether set A is empty, if empty, then continues Step 5; Otherwise, get back to Step 3.
Step 5: gather from the user and take out any user k the U, continue Step 6.
Step 6: judge the subcarrier number of actual allocated to user k
Figure BDA00000228697100001110
With the predetermined subcarrier number of distributing to this user
Figure BDA00000228697100001111
Between relation, if
Figure BDA00000228697100001112
Then need to give unsatisfied user still, promptly carry out Step 7 unnecessary subcarrier allocation; Otherwise, carry out Step 8.
Step 7: distributing to the subcarrier set of user k
Figure BDA00000228697100001113
In choose a subcarrier s *, and do not satisfy the l that chooses a user among the user as yet in the subcarrier number *, make
Figure BDA00000228697100001114
With subcarrier s *Redistribute l to the user *Even,
Figure BDA00000228697100001115
Figure BDA00000228697100001116
Get back to Step 6.
Step 8: remove user k from set U, i.e. U=U-{k}; If U=φ, then algorithm finishes.Otherwise, get back to Step 5.
Above-mentioned two step algorithms have provided the subcarrier allocation strategy of local optimization problem.If distributing to the sub-carrier set of user k is combined into
Figure BDA0000022869710000122
The number of sub-carriers is
Figure BDA0000022869710000123
Can obtain Estimated value:
λ ^ k m = 2 R k m / S k m ( Π s ∈ S k m 1 + Δ s m g k , s m ) 1 S k m ln 2 .
Associating
Figure BDA0000022869710000126
With Calculating formula, can directly obtain the interference cost factor that sub-district m produces adjacent sub-district
Figure BDA0000022869710000128
Figure BDA0000022869710000129
Summing up above the analysis, is a kind of distributed resource allocation methods based on many sub-districts distributed iterative resource allocation policy (LCG-DIRA) of limited cooperative game, and each base station only needs to transmit mutually the interference cost factor.In this algorithm, aforesaid local resource allocation strategy is all independently carried out in each sub-district, and the renewal interference cost factor sends to its neighbor cell.Therefore, the resource allocation that is used for honeycomb multi-cell OFDMA system and the power distribution method of the present invention's proposition specifically can be summed up as following step:
The first step: initialization;
The definition interference cost factor is the marginal cost rate of rise of current area with the transmitting power growth of adjacent sub-district subcarrier, the transmission carrier power and the interference cost factor of a plurality of base stations in the mobile cellular communication system are initialized as zero, suppose that each base station is known to the subscriber channel fading coefficients in this sub-district, even p m=0,
Figure BDA00000228697100001211
N ∈ A m
Second step: the bandwidth allocation scheme of formulating each sub-district;
The consideration current area is the m sub-district, and the base station adopts the M-BABS algorithm to determine the required subcarrier number of each user in the sub-district according to rate requirement, sub-carrier channels fading coefficients, the interference cost factor of each user in this sub-district; M is a natural number;
The 3rd step: the subcarrier distribution scheme of determining the user;
Each sub-district in the system is according to the bandwidth allocation scheme in second step, and adopting the M-RCG algorithm is that each user distributes suitable subcarrier in the sub-district;
The 4th step: give each cell allocation sub-carrier power;
According to user's subcarrier allocation situation of this sub-district in the 3rd step, calculate the Lagrange multiplier on each subcarrier
Figure BDA00000228697100001212
Wherein the computing formula of Lagrange multiplier is as follows:
λ k m = 2 R k m / S k m ( Π s ∈ S k m 1 + Δ s m g k , s m ) 1 S k m ln 2 ,
In the following formula It is the sub-carrier number that the m cell allocation is given k user;
Figure BDA0000022869710000133
For the neighbor cell of all m sub-districts to the interference cost factor sum of m sub-district on s subcarrier;
Figure BDA0000022869710000134
It is the minimum transmission rate request of k user in the m sub-district; Intermediate variable
Figure BDA0000022869710000135
Be defined as:
g k , s m = | H k , s m | 2 / Γ ( I k , s m ( p m - ) + N 0 B / N ) , ∀ s ∈ S , k∈U m
Wherein
Figure BDA0000022869710000138
Base station and the channel fading coefficient of k user on s subcarrier of representing the m sub-district; Described Г=-ln (5BER)/1.5, be the error rate that the BER customer service requires; N is the assignable carrier wave sum of ofdm system; N 0Be the white noise power spectral density; B is a system bandwidth;
Figure BDA0000022869710000139
Represent that the n sub-district is to the interference gross power of k user on s subcarrier.
According to worthwhile Lagrange multiplier
Figure BDA00000228697100001310
Calculate and give this sub-district sub-carrier power that each user distributes
Figure BDA00000228697100001311
Wherein
Figure BDA00000228697100001312
K user's power is given s subcarrier allocation of m sub-district in expression; Described this sub-district is meant any one sub-district in the system.Wherein the computing formula of sub-carrier power is as follows:
p k , s m = [ λ k m ( 1 + Δ s m ) ln 2 - Γ ( I k , s m ( p m - ) + N 0 B / N ) | H k , s m | 2 ] + ,
In the following formula [] +Variable in the symbolic representation bracket is got variate-value itself greater than 0, when this variable is got 0 value less than 0.
The 5th step: calculating and sending is sent the interference cost factor of neighbor cell
If n sub-district and m sub-district are neighbor cells, according to Lagrange multiplier
Figure BDA00000228697100001314
The sub-carrier power of trying to achieve with the last step
Figure BDA00000228697100001315
Calculate the interference cost factor of m sub-district to the n sub-district
Figure BDA00000228697100001316
And pass through the minizone data-interface with the interference cost factor
Figure BDA00000228697100001317
Send to the n sub-district; Described n is a natural number.The m sub-district is as follows to the n sub-district in the computing formula of s subcarrier interference work factor:
Δ s m , n = Σ k ∈ U m λ k m ∂ f ( γ k , s m ( p ) ) ∂ γ k , s m ( γ k , s m ) 2 p k , s m | H k , s m | 2 | H k , s n | 2 ;
Wherein
Figure BDA0000022869710000141
P is the power division matrix that comprises all subcarriers of sub-district of system,
Figure BDA0000022869710000142
Be the reception Signal to Interference plus Noise Ratio of m community user k on subcarrier s:
γ k , s m ( p ) = p k , s m | H k , s m | 2 | H k , s m | 2 Σ j ∈ U m j ≠ k p j , s m + Σ n ∈ A m | H k , s n | 2 ( Σ i ∈ U n p i , s n ) + N 0 B / N .
Upgrade the interference cost factor that adjacent sub-district sends to this sub-district { Δ s n , m , ∀ s ∈ S , n ∈ A m } .
The 6th step: circulation
This cell update neighbor cell is issued and was gone to for second step after the interference cost factor of this sub-district and carry out bandwidth and the power division of following one-period, with this second step of repetition of circulating to the 6th step.
Simulation result:
The performance that the present invention has showed the LCG-DIRA algorithm by Computer Simulation, and compare with the iteration of not considering interference effect (IWF) algorithm of pouring water.Simulating scenes as shown in Figure 3, analogue system is made of the base station of 37 configuration omnidirectional antennas, each sub-district comprises 10 users, be evenly distributed at random the base station around, and all users' minimum transmission rate request is identical.Each user only considers the interference that bring a nearest A base station, and ignores the influence of other area interference.For equilibrium feedback load and systematic function, emulation has also been compared A=1, the systematic function during 2,3,4 different values.In order to eliminate boundary effect, only add up the performance of 7 sub-districts, center, simulation result is 100 independent simulation result average at random.Other simulation parameters see Table 1 table:
Other relevant simulation parameters of table 1
Figure BDA0000022869710000145
Figure BDA0000022869710000151
Fig. 4 has provided when the minimum transmission rate of customer service requirement changes, the average transmit power of system.As can be seen, when system load was low, the average transmit power of two kinds of algorithms was basic identical.But along with load increases gradually, algorithm that this section is carried can significantly reduce system emission power.But when user rate was had relatively high expectations, algorithm can can't be restrained because not satisfying user's demand.As can be seen from the figure, when user's transmission rate request
Figure BDA0000022869710000152
During greater than 0.5 MBPS (Mbps), the iteration algorithm of pouring water can not be restrained again, promptly adopt infinitely-great power that user's quality of service requirement is met, and the LCG-DIRA power distribution method that this section proposes can be restrained in a some continuation in A 〉=2, up to
Figure BDA0000022869710000153
(when A=4), this shows that the LCG-DIRA algorithm pours water than iteration and have wider convergence domain.
Fig. 5 has showed interference-to-noise ratio on average each subcarrier, and (Interference over Thermal is IoT) with the situation of change of system load.Here IoT is defined as the presence of intercell interference power that is subjected on average each subcarrier and the ratio of thermal noise power, and it has reflected the level of presence of intercell interference in the system.As can be seen from the figure, along with the increase of load, the presence of intercell interference in the system also increases the weight of gradually.But compare with the iteration algorithm of pouring water, even only a main interference source is carried out interference coordination (being the situation of A=1), LCG-DIRA also can reduce interference level significantly.The reason that produces this gain comprises two: the reduction of total transmitted power and the coordination of presence of intercell interference.According to Fig. 4, when adopting the LCG-DIRA algorithm, total transmitting power of system reduces and is not obvious, and therefore, the reduction of interference mainly comes from the interference coordination of minizone.In addition, the LCG-DIRA algorithm increases along with the increase of system load gradually to disturbing the amplitude that reduces, and has further verified this point.Because along with the increase of system load, presence of intercell interference also increases the weight of gradually, this moment, interference coordination was also just obvious all the more to the improvement of performance.
Fig. 6 has further provided the average interrupt probability of system.In emulation, in a time slot, a user's transmission rate is lower than 90% of its minimum transmission rate request, and then note is done once and interrupted.Wherein preceding 30 time slots are used for the startup of algorithm, therefore do not participate in performance statistics.As seen from the figure, compare with the iteration algorithm of pouring water, the LCG-DIRA algorithm can significantly reduce the system break probability.In addition, the pour water outage probability of algorithm of iteration increases along with the increase of system load, and the outage probability of LCG-DIRA algorithm remain unchanged substantially (when
Figure BDA0000022869710000154
The time).This is consistent with top analysis, because when system load increases, the probability that " collision " takes place the minizone subcarrier strengthens, if can not handle this situation, user's minimum transmission rate will be difficult to be guaranteed.And the LCG-DIRA algorithm is by introducing interference compensation in the resource allocation of this sub-district, thereby controlled the interference level of this sub-district to neighbor cell, thereby more stable.
As can be seen, share the many sub-districts distributed associating allocation of carriers and the power distribution strategies of interfere information between base station of the present invention, allocation of carriers and power division can be determined according to the interference feedback of this community user situation and adjacent sub-district in every base station, need not other base station center controllers; This method has than the better convergence of the single cell power allocation algorithm of tradition; This method has ensured user's minimum transmission rate service quality (QoS) requirement, can obtain littler outage probability; And can effectively coordinate interference among adjacent cells, make that the average mutual interference ratio traditional algorithm between a plurality of base stations is littler.In addition,, bring bigger burden can for the information transmission between the base station, therefore have good practicality because each base station only just can obtain good interference coordination performance with the interference feedback of the main interference base station of considering all neighbor cells.
Above content is to further describing that the present invention did in conjunction with concrete preferred implementation; can not assert that the specific embodiment of the present invention only limits to this; for the general technical staff of the technical field of the invention; without departing from the inventive concept of the premise; can also make some simple deduction or replace, all should be considered as belonging to the present invention and determine scope of patent protection by claims of being submitted to.

Claims (4)

1. a resource allocation and a power distribution method that is used for honeycomb multi-cell OFDMA system is characterized in that, may further comprise the steps:
1) initialization
The definition interference cost factor is the marginal cost rate of rise of current area with the transmitting power growth of adjacent sub-district subcarrier, the transmission carrier power and the interference cost factor of a plurality of base stations in the mobile cellular communication system are initialized as zero, suppose that each base station is known to the subscriber channel fading coefficients in this sub-district;
2) formulate the bandwidth allocation scheme of each sub-district
The consideration current area is the m sub-district, and the base station adopts the M-BABS algorithm to determine the required subcarrier number of each user in the sub-district according to rate requirement, sub-carrier channels fading coefficients, the interference cost factor of each user in this sub-district; M is a natural number;
3) determine user's subcarrier distribution scheme
Each sub-district in the system is according to step 2) in bandwidth allocation scheme, adopting the M-RCG algorithm is that each user distributes suitable subcarrier in the sub-district;
4) give each cell allocation sub-carrier power
According to user's subcarrier allocation situation of this sub-district of step 3), calculate the Lagrange multiplier on each subcarrier
Figure FDA0000022869700000011
According to calculate Lagrange multiplier Calculate and give this sub-district sub-carrier power that each user distributes
Figure FDA0000022869700000013
Wherein
Figure FDA0000022869700000014
K user's power is given s subcarrier allocation of m sub-district in expression; Described k and s are natural number; Described this sub-district is meant any one sub-district in the system;
5) calculating and sending is sent the interference cost factor of neighbor cell
If n sub-district and m sub-district are neighbor cells, according to Lagrange multiplier
Figure FDA0000022869700000015
The sub-carrier power of trying to achieve with the last step
Figure FDA0000022869700000016
Calculate the interference cost factor of m sub-district to the n sub-district
Figure FDA0000022869700000017
And pass through the minizone data-interface with the interference cost factor
Figure FDA0000022869700000018
Send to the n sub-district; Described n is a natural number;
6) circulation
This cell update neighbor cell is issued the interference cost factor of this sub-district, goes to step 2) carry out bandwidth and the power division of following one-period, with this repeating step 2 that circulates) to step 6).
2. resource allocation and the power distribution method that is used for honeycomb multi-cell OFDMA system according to claim 1 is characterized in that, in the step 4): the computing formula of Lagrange multiplier is as follows:
λ k m = 2 R k m / S k m ( Π s ∈ S k m 1 + Δ s m g k , s m ) 1 S k m ln 2 ,
In the following formula
Figure FDA0000022869700000022
It is the sub-carrier number that the m cell allocation is given k user;
Figure FDA0000022869700000023
For the neighbor cell of all m sub-districts to the interference cost factor sum of m sub-district on s subcarrier;
Figure FDA0000022869700000024
It is the minimum transmission rate request of k user in the m sub-district; Intermediate variable
Figure FDA0000022869700000025
Be defined as
Figure FDA0000022869700000026
Figure FDA0000022869700000027
Wherein
Figure FDA0000022869700000028
Base station and the channel fading coefficient of k user on s subcarrier of representing the m sub-district; Described Г=-ln (5BER)/1.5, be the error rate that the BER customer service requires; N is the assignable carrier wave sum of ofdm system; N 0Be the white noise power spectral density; B is a system bandwidth;
Figure FDA0000022869700000029
Represent that the n sub-district is to the interference gross power of k user on s subcarrier.
3. resource allocation and the power distribution method that is used for honeycomb multi-cell OFDMA system according to claim 1 and 2 is characterized in that, in the step 4): the computing formula of sub-carrier power is as follows:
p k , s m = [ λ k m ( 1 + Δ s m ) ln 2 - Γ ( I k , s m ( p m - ) + N 0 B / N ) | H k , s m | 2 ] + ,
In the following formula [] +Variable in the symbolic representation bracket is got variate-value itself greater than 0, when this variable is got 0 value less than 0.
4. resource allocation and the power distribution method that is used for honeycomb multi-cell OFDMA system according to claim 1 and 2 is characterized in that in the step 5): wherein the m sub-district to the n sub-district in the computing formula of s subcarrier interference work factor is Δ s m , n = Σ k ∈ U m λ k m ∂ f ( γ k , s m ( p ) ) ∂ γ k , s m ( γ k , s m ) 2 p k , s m | H k , s m | 2 | H k , s n | 2 ;
Wherein
Figure FDA00000228697000000212
P is the power division matrix that comprises all subcarriers of sub-district of system,
Figure FDA00000228697000000213
Be the reception Signal to Interference plus Noise Ratio of m community user k on subcarrier s:
γ k , s m ( p ) = p k , s m | H k , s m | 2 | H k , s m | 2 Σ j ∈ U m j ≠ k p j , s m + Σ n ∈ A m | H k , s n | 2 ( Σ i ∈ U n p i , s n ) + N 0 B / N .
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